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Superpixel based roughness measure for cotton leaf diseases detection and classification

机译:基于Superpixel的棉花疾病探测和分类粗糙度测量

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Color image segmentation is very important for separating an object of interest from given input image. For cotton leaf disease detection, an infected part of leaf must be separated out for further classification. This paper proposed a technique for cotton leaf diseases detection and classification using the concept of roughness measure and simple linear iterative clustering. An optimum number of superpixel group are formed using roughness measure for extracting region of interest of cotton leaf. Gray level co-occurrence matrix features are extracted from detected region. Support vector machine, a supervised machine learning algorithm is used to classify cotton leaf into four different categories as Alternaria diseases, Bacterial diseases, White flies, and Healthy cotton leaf. Proposed algorithms demonstrated the average classification accuracy of 94% with the available database.
机译:彩色图像分割对于将感兴趣的对象与给定的输入图像分离非常重要。对于棉叶疾病检测,必须分开感染部分的叶子以进行进一步分类。本文提出了一种使用粗糙度测量概念和简单的线性迭代聚类的棉花叶疾病检测和分类技术。使用粗糙度测量来形成最佳数量的超像素组,用于提取棉花叶的兴趣区域。从检测到的区域中提取灰度级共出矩阵特征。支持向量机,监督机器学习算法用于将棉花叶分成四种不同类别作为alterararia疾病,细菌疾病,白色苍蝇和健康的棉叶。提出的算法与可用数据库一起显示了94 %的平均分类准确性。

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